机器学习辅助设计的活性正极材料

S. Yong, Zhuoyuan Zheng, Pingfeng Wang, Yumeng Li
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引用次数: 1

摘要

传统的材料设计方法包括实验测量和计算模拟,效率不高。近年来,机器学习被认为是一种很有前途的材料设计解决方案。通过观察以前的数据,机器学习发现模式,从模式中学习并预测材料性能。在本研究中,机器学习方法被用于发现具有更好性能的新阴极,包括晶体系统学习和性能预测。K-Folder交叉验证用于在有限的数据集上找到最佳的训练数据,然而增加训练数据的百分比最终会导致更好的预测性能。研究发现,随机森林算法在晶体系统分类中具有最高的平均准确率,而额外随机树算法在预测阴极电性能的回归模型中具有较高的平均决定系数和较低的均方误差。随机森林算法是从广泛的机器学习算法中选择的,并实现了蒙特卡罗验证。通过特征重要性评价,发现氧含量对预测容量、重力和体积变化的影响最大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Assisted Design for Active Cathode Materials
The traditional way of designing materials, including experimental measurement and computational simulation, are not efficient. Machine learning is considered a promising solution for material design in the recent years. By observing from previous data, machine learning finds patterns, learns from the patterns and predict the material properties. In this study, machine learning methods are used for discovering new cathode with better properties, includes crystal system learning and the property prediction. K-Folder cross-validation is used for finding the best training data with a limited dataset, nevertheless increasing the percentage of training data would ultimately result in better performance on prediction. It is found that, random forest gives the highest average accuracy in crystal system classification, meanwhile, extra randomized tree algorithm provides a higher averaged coefficient of determination and lower mean squared error in the regression model predicting electrical properties of cathodes. The random forest algorithm is chosen from a wide range of machine learning algorithms with the implementation of Monte Carlo validation. Based on the feature importance evaluation, oxygen contents are found to have the highest effects in determining capacity gravity and volume change in properties prediction.
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